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Determination of arterial input function for quantification of cerebral blood flow with dynamic susceptibility contrast-enhanced MR imaging using fuzzy clustering

机译:用模糊聚类测定动态易感性对比度增强MR成像的脑血流动量化脑血流量的测定

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When quantifying the perfusion parameters such as cerebral blood flow (CBF) using dynamic susceptibility contrast-enhanced magnetic resonance imaging (DSC-MRI), the arterial input function (AIF) of contrast agent has to be determined. In this study, we developed a method for obtaining the AIF automatically using fuzzy c-means (FCM) clustering. First, a mask region of interest (ROI) was drawn around the internal carotid artery. Second, FCM clustering was applied to the data in this ROI and the cluster centroids were calculated. The cluster centroid with the highest maximum concentration, earliest maximum concentration and smallest FWHM of the time-concentration curve (TCC) was determined as the arterial pixels and the AIF was obtained from the mean TCC in these pixels. We applied this method to six subjects and compared it with a manual ROI method. The difference between the CBF values calculated using the AIF obtained by FCM clustering [CBF(fuzzy)] and that obtained by the manual ROI method [CBF(manual)] ranged from 0.92% to 122% [38.6/spl plusmn/37.7% (mean/spl plusmn/SD)]. The CBF(manual) values were generally overestimated compared with the CBF(fuzzy) values, while the CBF(fuzzy) values became closer to the CBF values found in the literature. In conclusion, FCM clustering appears to be promising for determination of AIF, because it allows automatic, rapid and accurate extraction of arterial pixels.
机译:当使用动态敏感性对比度增强的磁共振成像(DSC-MRI)量化诸如脑血流(CBF)的灌注参数时,必须确定造影剂的动脉输入功能(AIF)。在这项研究中,我们开发了一种使用模糊C-Means(FCM)聚类自动获取AIF的方法。首先,在内部颈动脉周围绘制感兴趣的掩模区域(ROI)。其次,将FCM聚类应用于该投资回报率中的数据,并计算集群质心。确定具有最高最高浓度,最早的最大浓度和最小的时间浓度曲线(TCC)的最大浓度和最小FWHM的簇质心被确定为动脉像素,并且AIF从这些像素中的平均TCC获得。我们将这种方法应用于六个科目,并使用手动ROI方法进行比较。使用FCM聚类获得的AIF计算的CBF值[CBF(模糊)]和通过手动ROI方法获得的差异[CBF(手动),范围为0.92%至122%[38.6 / SPL PULLMN / 37.7%(平均值/拼接Plusmn / SD)]。与CBF(模糊)值相比,CBF(手动)值通常高估,而CBF(模糊)值变得更接近文献中发现的CBF值。总之,FCM聚类似乎有希望确定AIF,因为它允许自动,快速和准确地提取动脉像素。

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